/modern_egfrd_tc

modern C++ implementation of eGfrd

Primary LanguageC++GNU General Public License v2.0GPL-2.0

enhanced Green's Function Reaction Dynamics

a modern C++ implementation

  • Copyright (C) 2015-2017 AMOLF
  • Copyright (C) 2005-2008 The Molecular Sciences Institute
  • Copyright (C) 2009-2010 FOM Institute AMOLF
  • Copyright (C) 2008-2010 RIKEN

About this package

This package is a modern C++ implementation of the eGFRD algorithm.

It has some important improvements over its predecessor:

  • Minimal dependencies, allowing quick getting started.
  • It is very fast (3 to 4 orders of magnitude faster than previous version).
  • Rewritten mostly from scratch, in modern C++, using new and efficient language features.
  • Improved code-style, bug- and design fixes, easier to understand and maintain.
  • Multi platform support

The previous version of the eGFRD simulator had grown in the years, with many different developers, into a complicated and bloated codebase. For new students it would take several months to get familiar with the source code, and even longer to get the understanding and trust to change and/or add features. Furthermore the project had many dependencies, where some had become obsolete and others diverged, leading to version compatibility problems.

It became clear that this situation was no longer maintainable on the long term. In 2015 an effort was started to rewrite the eGFRD simulator from scratch. Resulting in this package.

It utilizes the new C++ language standard (modern ISO C++11 and C++14) with its optimized features like move-semantics and smart-pointers. Where needed types use fast STL-containers leading to no dependencies on external libraries (except for GNU Scientific Library). Most of the Template Meta Programming (TMP) model which was excessively present in the previous code was deserted, leaving clean understandable types and faster code compilation (rebuild time went down from 15 min to less than 2 min).

The best C++ components were cherry picked from the old codebase, like MatrixSpace and EventScheduler. Remaining simulation code in Python was converted to C++. Software engineering principles were implemented, like splitting code into a more modular system. The GreenFunctions, the Simulator and Logger now have their own separate libraries. The Bessel look-up tables are stored in data-files and not in-lined in the executable. This ongoing revision process now resulting in the first publicly available re-release of a novel and very fast simulator.

Authors

Modern C++ version writen by:

  • Luc Blom
  • Marco Seynen
  • Pieter Rein ten Wolde

based on previous work done by:

  • Nils Becker
  • Laurens Bossen
  • Kazunari Kaizu
  • Moriyoshi Koizumi
  • Thomas Miedema
  • Sorin Tanase-Nicola
  • Thomas Sokolowski
  • Koichi Takahashi
  • Pieter Rein ten Wolde

License

This package is distributed under the terms of GNU General Public License version 2. See LICENSE.

Building this package

See INSTALL.

History

Koichi Takahashi initially stated development of the code in 2005 to implement his prototype of Greens Function Reaction Dynamics simulation method invented by Jeroen van Zon and Pieter Rein ten Wolde in AMOLF, Amsterdam[4]. He gave a brief invited talk about performance evaluation and applicability of the method to yeast pheromon response pathway (the Alpha pathway) using the prototype in the Third Annual Alpha Project Research Symposium (June 16-27, 2005, at UC Berkeley Art Museum).

Later, in December 2006, ten Wolde, Sorin Tanase-Nicola, and Takahashi decided to introduce the concept called first-passage processes inspired by a paper by Opplestrup et al.[3] to Greens Function Reaction Dynamics to further boost the performance and accuracy of the method. The new method was called eGFRD (enhanced Greens Function Reaction Dynamics). Takahashi implemented the single-body Greens function within the year. Tanase-Nicola derived the two-body Greens function, and Takahashi devised and implemented a neat yet complicated way to efficiently evaluate the function mostly in the first half of 2007. Takahashi also implemented the main part of the code, asynchronous discrete-event-driven kinetic monte-carlo, which has been mostly finished within 2007, and the dynamic switching between Greens function and brute-force Brownian Dynamics as a means to recover from particle squeezing conditions by April 2008. At this point, development and debugging of the initial version (version 0.1) of the code had been largely finished and had been used in simulation experiments in study of various biochemical systems including dual-phosphorylation pathways[4].

Thomas Miedema and Laurens Bossen, while masters students in the group of Pieter Rein ten Wolde at AMOLF, added support for reaction-diffusion on and with 1D and 2D surfaces. Laurens implemented the 1D and 2D Green's functions in C++, Thomas implemented the algorithm in Python.

In 2009 Thomas Sokolowski and Nils Becker joined the project. Thomas S. will extend the scheme to be able to simulate active transport processes via molecular motors. This requires the calculation of new Green's functions starting from the diffusion-drift equation. Nils B. recently started working on the interplay of DNA sliding and 3D diffusion.

Plans

Some features planned to be added are; migration of the surfaces / interactions code (not available yet), model-entry frontend, simulations of polymers with multiple binding sites and states (fold reaction-rules to overcome combinatorial explosion of possible speciesType).

In addition to new features we are also working on improving the codebase; clean-up, commenting and documenting, unit-testing. Keeping up with compiler and library improvements. Adding more examples and usage information.

References

  • [1] Green's-function reaction dynamics: a particle-based approach for simulating biochemical networks in time and space; van Zon and ten Wolde, J. Chem. Phys. 123 (2005).
  • [2] Simulating biochemical networks at the particle level and in time and space: Green's function reaction dynamics; van Zon and ten Wolde, Phys. Rev. Lett. 94 (2005).
  • [3] First-Passage Monte Carlo Algorithm: Diffusion without All the Hops, Opplestrup et al., Phys. Rev. Lett. 97 (2006).
  • [4] Spatio-temporal correlations can drastically change the response of a MAPK pathway; Takahashi, Tanase-Nicola, ten Wolde, arXiv:0907.0514v1 (2009)